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부하변동율을 이용한 선거일의 24시간 수요예측The 24 Hourly Load Forecasting of the Election Day Using the Load Variation Rate

Other Titles
The 24 Hourly Load Forecasting of the Election Day Using the Load Variation Rate
Authors
송경빈
Issue Date
Jun-2010
Publisher
대한전기학회
Keywords
Short-term electric load forecasting; Linear linear regression; Load variation rate.
Citation
전기학회논문지ABCD, v.59, no.6, pp.1041 - 1045
Journal Title
전기학회논문지ABCD
Volume
59
Number
6
Start Page
1041
End Page
1045
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/15116
ISSN
1229-2443
Abstract
Short-term electric load forecasting of power systems is essential for the power system stability and the efficient power system operation. An accurate load forecasting scheme improves the power system security and saves some economic losses in power system operations. Due to scarcity of the historical same type of holiday load data, most big electric load forecasting errors occur on load forecasting for the holidays. The fuzzy linear regression model has showed good accuracy for the load forecasting of the holidays. However, it is not good enough to forecast the load of the election day. The concept of the load variation rate for the load forecasting of the election day is introduced. The proposed algorithm shows its good accuracy in that the average percentage error for the short-term 24 hourly loads forecasting of the election days is 2.27%. The accuracy of the proposed 24 hourly loads forecasting of the election days is compared with the fuzzy linear regression method. The proposed method gives much better forecasting accuracy with overall average error of 2.27%, which improved about average error of 2% as compared to the fuzzy linear regression method.
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